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Remote Sensing Inversion of Water Quality Parameters in Longquan Lake Based on PSO-SVR Algorithm

机译:基于PSO-SVR算法的龙泉湖水质参数遥感反演

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The paper uses the PSO-SVR algorithm to inverse the water quality parameters based on GF-1 remote sensing image in Longquan lake where is located in Chengdu, Sichuan Province. Longquan Lake is a key drinking water source in Chengdu, so its water quality is very critical. Particle swarm optimization (PSO) optimizes the parameters of the support vector regression (SVR) inversion model to establish the new PSO-SVR inversion model, and PSO can effectively improve the efficiency and the accuracy of the SVR inversion model. At the same, the empirical inversion model was established by using the measured hyperspectral data and concentration of water quality parameters. Comparing with SVR inversion model, PSO-SVR inversion model achieves a better result in the application of suspended solids and Chlorophyll concentration inversion.
机译:本文采用PSO-SVR算法以龙泉湖的GF-1遥感图像逆水质参数,位于四川省成都。龙泉湖是成都的一个关键饮用水来源,因此其水质非常关键。粒子群优化(PSO)优化支持向量回归(SVR)反转模型的参数,以建立新的PSO-SVR反转模型,PSO可以有效地提高SVR反转模型的效率和准确性。在相同的情况下,通过使用测量的高光谱数据和水质参数浓度来建立经验反演模型。与SVR反转模型相比,PSO-SVR反转模型达到了悬浮固体和叶绿素浓度反转的施加更好的结果。

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